TY - GEN
T1 - The Use of Features to Enhance the Capability of Deep Reinforcement Learning for Investment Portfolio Management
AU - Ren, Xiaotian
AU - Jiang, Zhengyong
AU - Su, Jionglong
N1 - Publisher Copyright:
© 2021 IEEE.
PY - 2021/3/5
Y1 - 2021/3/5
N2 - Reinforcement learning algorithms and neural networks have been widely used in stock market forecasting, image recognition processing and many other fields. In this research, we adopt features based on asset prices and transaction volume to have better description of the current state. This research aims to input new features combination into the neural network to assist agent in analyzing the market environment for 11 cryptocurrencies. The experimental data contains historical data of the price and transaction volume of the sample from 30 days before backtest sets, as well as features (the volume, the rate of change, the moving average, the stochastic oscillator, the Eliot oscillator and the On Balance Volume) calculated using the historical data. The efficacy of our strategy is comparing to that of nine traditional strategies, i.e., Aniticor, Online Moving Average Reversion, Passive Aggressive Mean Reversion, Confidence Weighted Mean Reversion, Robust Median Reversion, Online Newton Step, Universal Portfolios and Exponential Gradient. The experiments result shows the use of features can increase the final profit, which is about 10% more profitable compare with strategy established by Jiang et al. in Jul. 2017. Furthermore, the best combination of our features outperforms all other traditional strategies by at least 7.6%.
AB - Reinforcement learning algorithms and neural networks have been widely used in stock market forecasting, image recognition processing and many other fields. In this research, we adopt features based on asset prices and transaction volume to have better description of the current state. This research aims to input new features combination into the neural network to assist agent in analyzing the market environment for 11 cryptocurrencies. The experimental data contains historical data of the price and transaction volume of the sample from 30 days before backtest sets, as well as features (the volume, the rate of change, the moving average, the stochastic oscillator, the Eliot oscillator and the On Balance Volume) calculated using the historical data. The efficacy of our strategy is comparing to that of nine traditional strategies, i.e., Aniticor, Online Moving Average Reversion, Passive Aggressive Mean Reversion, Confidence Weighted Mean Reversion, Robust Median Reversion, Online Newton Step, Universal Portfolios and Exponential Gradient. The experiments result shows the use of features can increase the final profit, which is about 10% more profitable compare with strategy established by Jiang et al. in Jul. 2017. Furthermore, the best combination of our features outperforms all other traditional strategies by at least 7.6%.
KW - cryptocurrencies
KW - deep reinforcement learning
KW - features
UR - http://www.scopus.com/inward/record.url?scp=85105263402&partnerID=8YFLogxK
U2 - 10.1109/ICBDA51983.2021.9403019
DO - 10.1109/ICBDA51983.2021.9403019
M3 - Conference Proceeding
AN - SCOPUS:85105263402
T3 - 2021 IEEE 6th International Conference on Big Data Analytics, ICBDA 2021
SP - 44
EP - 50
BT - 2021 IEEE 6th International Conference on Big Data Analytics, ICBDA 2021
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 6th IEEE International Conference on Big Data Analytics, ICBDA 2021
Y2 - 5 March 2021 through 8 March 2021
ER -